Adaptive Density Estimation for Personalized Recommendations Across Varied User Activity Levels

Published: 2025, Last Modified: 26 Jan 2026IEEE Trans. Comput. Soc. Syst. 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Top-N recommendation systems are recognized as highly effective for delivering personalized services that cater to the varied interests of users. Nonetheless, current state-of-the-art (SOTA) analyses reveal a marked variability in their performance across users with differing levels of activity, which substantially undermines the quality of personalized recommendation services. Prevailing research tends to overlook this discrepancy, often presuming a uniform probability distribution in user preferences and employing a static model (such as a single latent vector) for user representation. This oversimplification impedes the adaptability of existing models to accommodate the spectrum of user activity levels. In our research, we introduce the variational kernel density estimation (VKDE) approach, an innovative nonparametric method designed to accurately capture the unique preference distributions of individual users. The VKDE framework integrates multiple local distributions to construct a comprehensive global preference profile for each user. We have developed a novel variational kernel function that delineates user-specific interests and constructs each local distribution accordingly. Additionally, we present a tailored sampling strategy that simplifies the complexity of the training process while preserving the efficacy of the recommendations. Empirical evaluations conducted on four widely recognized public datasets demonstrate that our VKDE model achieves superior performance over the SOTA alternatives, significantly enhancing accuracy for users with a broad range of activity levels.
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